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Why Big Data
THE INFORMATION AGE 
 The so-called “economic third wave” has bankrupted or 
seriously damaged many blue chip organisations 
 Traditional manufacturing and retail is in rapid and heavy 
decline in Europe and the US 
 Technology, connectivity and access to information is 
restructuring our societies 
 Levels of political and social engagement have surged 
 Peer-to-peer lending platforms have revolutionized banking in 
many countries
NEW AGE NEW ORDER 
 Manufacturing is shifting from the mass-production 
model of the 20th century back to build-to-order 
production 
 High street stores are being used as showrooms while 
the actual sale is made online 
 Web based services are run with tiny profit margins on 
huge transaction volumes 
 Systems like Amazon Marketplace, Etsy and Ebay are 
empowering small business, delivering globalised trade 
and driving socioeconomic change that has never been 
seen before
INNOVATION 
 Mass-production rarely benefits from innovation 
 Innovation drives change – a huge cost with little benefit for 
production-line driven economies 
 “Refinement of product” mentality 
 Knowledge services need to innovate to differentiate 
 Change in a virtual world can be cheap and yield huge 
rewards 
 “Reinvention of product” mentality
THE ROVER BICYCLE, 1885
A SHIFT IN DEMANDS 
 Shifting emphasis from mass-production to 
knowledge services and build-to-order 
production means shifting priorities 
 Innovation and change become more valued 
attributes than stability and reliability
LONG TAIL 
Wallmart, Best Buy 
Amazon, eBay, Netflix 
everything else / lower value 
Only the most popular / highest value 
Long-tail economics underpin the information age
BIG DATA VIZ LONG TAIL 
 Knowledge and information-driven services are following 
the “long-tail” paradigm in many ways, including 
processing huge amounts of low value data to yield 
profit 
 Google Now 
 Amazon recommendations 
 Ebay search 
 Facebook Exchange
BIG DATA VIZ INNOVATION 
 In a competitive, free market like the world-wide-web, 
innovation is valued because it can open up new 
opportunities 
 Consumer-grade access to grid computing technology is 
a recent innovation 
 Grid computing can open up new opportunities that 
would otherwise not be addressable 
 It is an excellent solution to the needs of ventures 
architected around the long-tail economic model
CURRENT TREND 
 Industrial economies and traditional production line 
manufacturing require stability, reliability and minimal 
change 
 Knowledge economies thrive on innovation, and process 
huge amounts of information 
 The US and Europe are transitioning from industrial to 
knowledge economies 
 Big Data concepts and technologies are a key enabler for 
the new economy
THE FUTURE - THINGTERNET 
 The internet of things is with us 
 Billions of connected devices, even e-tattoos
INTERNET OF THINGS 
AND BIG DATA 
 Billions of connected devices create a huge 
amount of data to process 
 Until grid computing, IoT was technically 
near impossible to implement
INTERNET OF THINGS IS A WILD 
WEST 
 The IoT poses many new, unsolved challenges 
An internet alarm clock, monitoring how often you sleep 
late, could be accessed by HR for employee 
performance evaluations 
 But new challenges = new opportunities
CLASSIC BIG DATA APPLICATIONS
STORAGE 
 Hadoop can be used purely for online data 
storage, with no direct processing 
 Low cost per-GB for petascale online storage 
 The option of directly querying or analysing 
the the data available if required.
PRODUCT SEARCH 
 A huge, constantly changing catalogue of 
products – like Ebay and Amazon 
 Simple keyword search matching customer to 
product 
 SolrCloud – a full text search engine indexing 
and serving up terabytes of live content, 
running on Hadoop clusters
BEHAVIOURAL TARGETING 
 Matching advertising content with users based on the 
user's demographic and interests – like Google AdWords 
 Behavioural Targeting can yield twice as many 
conversions (eg. Click-throughs) as untargeted 
advertising 
 Generates a huge amount of log data which is used for 
reporting and reprocessed for predictive analysis 
 Predictive analysis is compute intensive 
 TBs of data per day
PRODUCT RECOMMENDERS 
 Recommending products to the user based on their 
demographic and interests, other [similar] user's 
purchase history, and their current browsing pattern 
 Like Amazon and Zalando recommendations 
 A hybrid between Behavioural Ad Targeting and 
Product Search 
 Combines product catalogue, clickstream data and 
passive user profiling, possibly running live in-session
EMERGING BIG DATA APPLICATIONS
SELF SERVICE BIG DATA BUSINESS 
INTELLIGENCE 
 So-called “Enterprise Data Hub” paradigm 
 The fastest growing use case in 2014 on 
Yahoo's YGrid, a set of 16 clusters composed 
from 32.500 hadoop nodes 
 Sales, accounting, executive and other 
business users run the data analysis jobs 
themselves on the available datasets using 
discovery tools like MicroStrategy, Tableau and 
Tibco Spotfire
DATA WAREHOUSING 
 Many migrations of classical Enterprise Data 
Warehousing applications to Hadoop 
 2-3x+ performance gains over Teradata on 3TB – 30TB 
workloads 
 Huge cost savings versus trad enterprise technologies 
like Oracle and Teradata 
 Fraud detection – eg. Credit Card, Medical Insurance, 
Welfare 
 Credit risk appraisal – eg. Credit card application 
 Banking and Retail batch processes
OLTP DBMS 
 Many large scale OLTP dbms implementations 
use HBase, Accumulo or other NOSQL grid db 
 For low latency, high throughput, high 
concurrency, high volume 
 eg. Sharedealing, Realtime ad auction 
 Volumes at 200BN transactions per day in 
realtime reliably served
RESEARCH 
 Low cost solution for mapping the human 
genome 
 About 4TB of data per person 
 eg. Cancer research, personalised drugs etc.
DEVICE MANAGEMENT 
 Automated, managed service for analysis and 
response to threats detected by SPI module on 
remote switch 
 Central heating system management – shut 
down boiler when nobody home to reduce 
heating bill and emissions – eg. Nest 
 Monitor drivers' propensity to break the speed 
limit and apply lower insurance premiums to 
good drivers
Why Big Data - the data rush

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Why Big Data - the data rush

  • 2.
  • 3. THE INFORMATION AGE  The so-called “economic third wave” has bankrupted or seriously damaged many blue chip organisations  Traditional manufacturing and retail is in rapid and heavy decline in Europe and the US  Technology, connectivity and access to information is restructuring our societies  Levels of political and social engagement have surged  Peer-to-peer lending platforms have revolutionized banking in many countries
  • 4.
  • 5. NEW AGE NEW ORDER  Manufacturing is shifting from the mass-production model of the 20th century back to build-to-order production  High street stores are being used as showrooms while the actual sale is made online  Web based services are run with tiny profit margins on huge transaction volumes  Systems like Amazon Marketplace, Etsy and Ebay are empowering small business, delivering globalised trade and driving socioeconomic change that has never been seen before
  • 6. INNOVATION  Mass-production rarely benefits from innovation  Innovation drives change – a huge cost with little benefit for production-line driven economies  “Refinement of product” mentality  Knowledge services need to innovate to differentiate  Change in a virtual world can be cheap and yield huge rewards  “Reinvention of product” mentality
  • 8. A SHIFT IN DEMANDS  Shifting emphasis from mass-production to knowledge services and build-to-order production means shifting priorities  Innovation and change become more valued attributes than stability and reliability
  • 9. LONG TAIL Wallmart, Best Buy Amazon, eBay, Netflix everything else / lower value Only the most popular / highest value Long-tail economics underpin the information age
  • 10. BIG DATA VIZ LONG TAIL  Knowledge and information-driven services are following the “long-tail” paradigm in many ways, including processing huge amounts of low value data to yield profit  Google Now  Amazon recommendations  Ebay search  Facebook Exchange
  • 11. BIG DATA VIZ INNOVATION  In a competitive, free market like the world-wide-web, innovation is valued because it can open up new opportunities  Consumer-grade access to grid computing technology is a recent innovation  Grid computing can open up new opportunities that would otherwise not be addressable  It is an excellent solution to the needs of ventures architected around the long-tail economic model
  • 12. CURRENT TREND  Industrial economies and traditional production line manufacturing require stability, reliability and minimal change  Knowledge economies thrive on innovation, and process huge amounts of information  The US and Europe are transitioning from industrial to knowledge economies  Big Data concepts and technologies are a key enabler for the new economy
  • 13. THE FUTURE - THINGTERNET  The internet of things is with us  Billions of connected devices, even e-tattoos
  • 14. INTERNET OF THINGS AND BIG DATA  Billions of connected devices create a huge amount of data to process  Until grid computing, IoT was technically near impossible to implement
  • 15. INTERNET OF THINGS IS A WILD WEST  The IoT poses many new, unsolved challenges An internet alarm clock, monitoring how often you sleep late, could be accessed by HR for employee performance evaluations  But new challenges = new opportunities
  • 16. CLASSIC BIG DATA APPLICATIONS
  • 17. STORAGE  Hadoop can be used purely for online data storage, with no direct processing  Low cost per-GB for petascale online storage  The option of directly querying or analysing the the data available if required.
  • 18. PRODUCT SEARCH  A huge, constantly changing catalogue of products – like Ebay and Amazon  Simple keyword search matching customer to product  SolrCloud – a full text search engine indexing and serving up terabytes of live content, running on Hadoop clusters
  • 19. BEHAVIOURAL TARGETING  Matching advertising content with users based on the user's demographic and interests – like Google AdWords  Behavioural Targeting can yield twice as many conversions (eg. Click-throughs) as untargeted advertising  Generates a huge amount of log data which is used for reporting and reprocessed for predictive analysis  Predictive analysis is compute intensive  TBs of data per day
  • 20. PRODUCT RECOMMENDERS  Recommending products to the user based on their demographic and interests, other [similar] user's purchase history, and their current browsing pattern  Like Amazon and Zalando recommendations  A hybrid between Behavioural Ad Targeting and Product Search  Combines product catalogue, clickstream data and passive user profiling, possibly running live in-session
  • 21. EMERGING BIG DATA APPLICATIONS
  • 22. SELF SERVICE BIG DATA BUSINESS INTELLIGENCE  So-called “Enterprise Data Hub” paradigm  The fastest growing use case in 2014 on Yahoo's YGrid, a set of 16 clusters composed from 32.500 hadoop nodes  Sales, accounting, executive and other business users run the data analysis jobs themselves on the available datasets using discovery tools like MicroStrategy, Tableau and Tibco Spotfire
  • 23. DATA WAREHOUSING  Many migrations of classical Enterprise Data Warehousing applications to Hadoop  2-3x+ performance gains over Teradata on 3TB – 30TB workloads  Huge cost savings versus trad enterprise technologies like Oracle and Teradata  Fraud detection – eg. Credit Card, Medical Insurance, Welfare  Credit risk appraisal – eg. Credit card application  Banking and Retail batch processes
  • 24. OLTP DBMS  Many large scale OLTP dbms implementations use HBase, Accumulo or other NOSQL grid db  For low latency, high throughput, high concurrency, high volume  eg. Sharedealing, Realtime ad auction  Volumes at 200BN transactions per day in realtime reliably served
  • 25. RESEARCH  Low cost solution for mapping the human genome  About 4TB of data per person  eg. Cancer research, personalised drugs etc.
  • 26. DEVICE MANAGEMENT  Automated, managed service for analysis and response to threats detected by SPI module on remote switch  Central heating system management – shut down boiler when nobody home to reduce heating bill and emissions – eg. Nest  Monitor drivers' propensity to break the speed limit and apply lower insurance premiums to good drivers